Asymptotic Confidence Regions for Kernel Smoothing of a Varying-Coefficient Model with Longitudinal Data 论文

1998Journal of the American Statistical Association引用 273
Statistical Methods and InferenceStatistical Methods and Bayesian InferenceBayesian Methods and Mixture Models

摘要

Abstract We consider the estimation of the k + 1-dimensional nonparametric component β(t) of the varying-coefficient model Y(t) = X T (t)β(t) + ε(t) based on longitudinal observations (Yij , X i (tij ), tij ), i = 1, …, n, j = 1, …, ni , where tij is the jth observed design time point t of the ith subject and Yij and X i (tij ) are the real-valued outcome and R k+1 valued covariate vectors of the ith subject at tij. The subjects are independently selected, but the repeated measurements within subject are possibly correlated. Asymptotic distributions are established for a kernel estimate of β(t) that minimizes a local least squares criterion. These asymptotic distributions are used to construct a class of approximate pointwise and simultaneous confidence regions for β(t). Applying these methods to an epidemiological study, we show that our procedures are useful for predicting CD4 (T-helper lymphocytes) cell changes among HIV (human immunodeficiency virus)-infected persons. The finite-sample properties of our procedures are studied through Monte Carlo simulations.